Corpus ID: 46968528

Reference Model of Multi-Entity Bayesian Networks for Predictive Situation Awareness

@article{Park2018ReferenceMO,
  title={Reference Model of Multi-Entity Bayesian Networks for Predictive Situation Awareness},
  author={Cheol Young Park and Kathryn B. Laskey},
  journal={ArXiv},
  year={2018},
  volume={abs/1806.02457}
}
  • Cheol Young Park, Kathryn B. Laskey
  • Published 2018
  • Computer Science
  • ArXiv
  • During the past quarter-century, situation awareness (SAW) has become a critical research theme, because of its importance. Since the concept of SAW was first introduced during World War I, various versions of SAW have been researched and introduced. Predictive Situation Awareness (PSAW) focuses on the ability to predict aspects of a temporally evolving situation over time. PSAW requires a formal representation and a reasoning method using such a representation. A Multi-Entity Bayesian Network… CONTINUE READING

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